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Advanced Multi-Color Fluorescence Imaging System for Detection of Biotic and Abiotic Stresses in Leaves

Konanz, Stefanie ; Kocsányi, László ; Buschmann, Claus

Agriculture (Basel), 2014-06, Vol.4 (2), p.79-95 [Periódico revisado por pares]

Basel: MDPI AG

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  • Título:
    Advanced Multi-Color Fluorescence Imaging System for Detection of Biotic and Abiotic Stresses in Leaves
  • Autor: Konanz, Stefanie ; Kocsányi, László ; Buschmann, Claus
  • Assuntos: Abiotic stress ; Chlorophyll ; Dyes ; fluorescence image ; ImageJ ; leaf level ; Leaves ; Open source software ; Plant diseases ; shape analysis ; stress detection ; symptom characterization
  • É parte de: Agriculture (Basel), 2014-06, Vol.4 (2), p.79-95
  • Descrição: The autofluorescence of a sample is a highly sensitive and selective optical property and gives the possibility to establish non-destructive techniques of the investigation of plants, like detecting the chlorophyll fluorescence related to stress phenomena. In this study, an advanced multi-color fluorescence imaging system and data analysis were presented. The advantage of an imaging system is the additional receiving of spatial information over a sample area, this is a strong improvement compared to spot measurements commonly used. The purpose was to demonstrate the possibility of the detection and characterization of stress symptoms using this system. Specific fluorescence ratios were identified to characterize the stress status over the whole leaf, here shown on barley grown under different nitrogen supply (abiotic stress). Due to the changes, it is possible to make conclusions about leaf pigments (chlorophylls and phenolics) related to stress response. The second aim was to use the shape of local symptoms (biotic stress) as a criterion. For this purpose, three structural different kinds of fungal symptoms were analyzed using shape descriptors. It shows that an additional image shape analysis can be very useful for extracting further information, in this case the successful discrimination of fungal infections.
  • Editor: Basel: MDPI AG
  • Idioma: Inglês

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